基于偏好的进化多目标优化

Zhenhua Li, Hai-Lin Liu
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引用次数: 4

摘要

在过去的几十年里,进化多目标优化(EMO)方法被广泛应用于寻找具有代表性的帕累托最优解集。虽然获得每个目标的范围和整个帕累托前沿的形状对于适当的决策有好处,但选择一组首选的帕累托最优解的任务也很重要。在本文中,我们将基于偏好的策略与EMO方法相结合,并演示了如何在首选范围内找到一组首选解决方案而不是一个解决方案。其基本思想是每个目标函数对应一个边际效用函数,边际效用函数表示决策者对每个目标的偏好范围。对应的效用函数表示决策者的满意度。这种程序将为决策者提供一套接近其偏好范围的解决方案,以便作出更好和更可靠的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preference-Based Evolutionary Multi-objective Optimization
Evolutionary Multi-objective Optimization (EMO) approaches have been amply applied to find a representative set of Pareto-optimal solutions in the past decades. Although there are advantages of getting the range of each objective and the shape of the entire Pareto front for an adequate decision-making, the task of choosing a preferred set of Pareto-optimal solutions is also important. In this paper, we combine a preference-based strategy with an EMO methodology and demonstrate how, instead of one solution, a preferred set of solutions in the preferred range can be found. The basic idea is that each objective function corresponds to a marginal utility function, which indicates the decision-maker's preferred range for each objective. The corresponding utility function denotes the decision-maker's satisfaction. Such procedures will provide the decision-maker with a set of solutions near his preferred ranges so that a better and more reliable decision can be made.
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